Clustering-based approaches have been demonstrated to be efficient and scalable to large-scale data sets. However, clustering-based recommender systems suffer from relatively low accuracy and coverage. To address these issues, we propose in this article an optimized multiview clustering approach for the recommendation of items in social networks. First, the selection of the initial medoids is optimized using the Bees Swarm optimization algorithm (BSO) in order to generate better partitions (i.e. refining the quality of medoids according to the objective function). Then, the multiview clustering (MV) is applied, where users are iteratively clustered from the views of both rating patterns and social information (i.e. friendships and trust). F...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...
AbstractIn this paper, we provide the results of ongoing work in Magnet Beyond project, regarding so...
Clustering-based approaches have been demonstrated to be efficient and scalable to large-scale data ...
Although there are many good collaborative recommendation methods, it is still a challenge to increa...
Recently, a new paradigm of social network based recommendation approach has emerged wherein structu...
Collaborative Filtering(CF) is a well-known technique in recommender systems. CF exploits relationsh...
Automatic recommendations are very popular in E-commerce, online shopping platforms, video on-demand...
Recommender systems aim to suggest relevant items to users among a large number of available items. ...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
Recommendation systems suggest items to the user by estimating their preferences. Most of the recomm...
Copyright © 2015 ACM. Friend recommendation is an important recommender application in social media....
Recommender systems apply information filtering technologies to identify a set of items that could b...
This thesis investigates the use of novel genetic and swarm intelligence algorithms to increase perf...
Part 3: Machine LearningInternational audienceIn user memory based collaborative filtering algorithm...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...
AbstractIn this paper, we provide the results of ongoing work in Magnet Beyond project, regarding so...
Clustering-based approaches have been demonstrated to be efficient and scalable to large-scale data ...
Although there are many good collaborative recommendation methods, it is still a challenge to increa...
Recently, a new paradigm of social network based recommendation approach has emerged wherein structu...
Collaborative Filtering(CF) is a well-known technique in recommender systems. CF exploits relationsh...
Automatic recommendations are very popular in E-commerce, online shopping platforms, video on-demand...
Recommender systems aim to suggest relevant items to users among a large number of available items. ...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
Recommendation systems suggest items to the user by estimating their preferences. Most of the recomm...
Copyright © 2015 ACM. Friend recommendation is an important recommender application in social media....
Recommender systems apply information filtering technologies to identify a set of items that could b...
This thesis investigates the use of novel genetic and swarm intelligence algorithms to increase perf...
Part 3: Machine LearningInternational audienceIn user memory based collaborative filtering algorithm...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...
AbstractIn this paper, we provide the results of ongoing work in Magnet Beyond project, regarding so...